Predicting Secondary Task Performance: A Directly Actionable Metric for Cognitive Overload Detection
2021; Institute of Electrical and Electronics Engineers; Volume: 14; Issue: 4 Linguagem: Inglês
10.1109/tcds.2021.3114162
ISSN2379-8939
AutoresPierluigi Vito Amadori, Tobias Fischer, Ruohan Wang, Yiannis Demiris,
Tópico(s)Healthcare Technology and Patient Monitoring
ResumoIn this article, we address cognitive overload detection from unobtrusive physiological signals for users in dual-tasking scenarios. Anticipating cognitive overload is a pivotal challenge in interactive cognitive systems and could lead to safer shared-control between users and assistance systems. Our framework builds on the assumption that decision mistakes on the cognitive secondary task of dual-tasking users correspond to cognitive overload events, wherein the cognitive resources required to perform the task exceed the ones available to the users. We propose DecNet, an end-to-end sequence-to-sequence deep learning model that infers in real time the likelihood of user mistakes on the secondary task, i.e., the practical impact of cognitive overload, from eye-gaze and head-pose data. We train and test DecNet on a data set collected in a simulated driving setup from a cohort of 20 users on two dual-tasking decision-making scenarios, with either visual or auditory decision stimuli. DecNet anticipates cognitive overload events in both scenarios and can perform in time-constrained scenarios, anticipating cognitive overload events up to 2 s before they occur. We show that DecNet's performance gap between audio and visual scenarios is consistent with user-perceived difficulty. This suggests that single modality stimulation induces higher cognitive load on users, hindering their decision-making abilities.
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